Structure learning in sequential data.

Structure learning in sequential data.
Liam Stewart, Liam Stewart
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Last edited by WorkBot
December 15, 2009 | History

Structure learning in sequential data.

The goal of discriminative sequence learning is to learn how to classify items that can be arranged in a sequence. Many models have been proposed including logistic regression, the maximum entropy Markov model, the conditional random field, the input output Markov model, the hidden random field, and template models based on restricted Boltzmann machines. These models differ along several dimensions: whether they can be represented by a directed graphical model or an undirected one, whether or not they are chain structured, whether or not they are fully observed models, and whether or not they can incorporate knowledge about larger scale label structures. In this work, we compare these models on several synthetic problems and on a larger information extraction task.

Publish Date
Language
English
Pages
95

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Book Details


Edition Notes

Source: Masters Abstracts International, Volume: 44-02, page: 0946.

Advisor: Richard Zemel.

Thesis (M.Sc.)--University of Toronto, 2005.

Electronic version licensed for access by U. of T. users.

GERSTEIN MICROTEXT copy on microfiche (2 microfiches).

The Physical Object

Pagination
95 leaves.
Number of pages
95

Edition Identifiers

Open Library
OL19216593M
ISBN 10
0494071931

Work Identifiers

Work ID
OL12683377W

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December 15, 2009 Edited by WorkBot link works
October 21, 2008 Created by ImportBot Imported from University of Toronto MARC record